通过机器学习辅助本德斯分解,高效计算解决混合整数模型预测控制问题

IF 3.3 2区 计算机科学 Q2 AUTOMATION & CONTROL SYSTEMS
Ilias Mitrai, Prodromos Daoutidis
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引用次数: 0

摘要

混合整数模型预测控制(MPC)问题出现在必须同时做出离散和连续决策以补偿干扰的系统运行中。要有效解决混合整数 MPC 问题,需要计算效率高的在线解决混合整数优化问题,而这些问题通常很难解决。在本文中,我们提出了一种基于机器学习的分支和检查广义本德尔分解算法,用于高效解决此类问题。我们利用机器学习,在不求解子问题的情况下,通过近似本德斯切分来近似复杂变量对子问题的影响,从而减轻了多次求解子问题的需要。我们将所提出的方法应用于有关化学过程操作的混合整数经济 MPC 案例研究。我们发现,如果混合整数 MPC 问题是可行的,那么所提出的算法总能找到优化问题的可行解,并且与应用标准和加速广义本德斯分解法相比,大大缩短了求解时间(高达 97% 或 50×),而误差却很小(1% 左右)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computationally efficient solution of mixed integer model predictive control problems via machine learning aided Benders Decomposition

Mixed integer Model Predictive Control (MPC) problems arise in the operation of systems where discrete and continuous decisions must be taken simultaneously to compensate for disturbances. The efficient solution of mixed integer MPC problems requires the computationally efficient online solution of mixed integer optimization problems, which are generally difficult to solve. In this paper, we propose a machine learning-based branch and check Generalized Benders Decomposition algorithm for the efficient solution of such problems. We use machine learning to approximate the effect of the complicating variables on the subproblem by approximating the Benders cuts without solving the subproblem, therefore, alleviating the need to solve the subproblem multiple times. The proposed approach is applied to a mixed integer economic MPC case study on the operation of chemical processes. We show that the proposed algorithm always finds feasible solutions to the optimization problem, given that the mixed integer MPC problem is feasible, and leads to a significant reduction in solution time (up to 97% or 50×) while incurring small error (in the order of 1%) compared to the application of standard and accelerated Generalized Benders Decomposition.

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来源期刊
Journal of Process Control
Journal of Process Control 工程技术-工程:化工
CiteScore
7.00
自引率
11.90%
发文量
159
审稿时长
74 days
期刊介绍: This international journal covers the application of control theory, operations research, computer science and engineering principles to the solution of process control problems. In addition to the traditional chemical processing and manufacturing applications, the scope of process control problems involves a wide range of applications that includes energy processes, nano-technology, systems biology, bio-medical engineering, pharmaceutical processing technology, energy storage and conversion, smart grid, and data analytics among others. Papers on the theory in these areas will also be accepted provided the theoretical contribution is aimed at the application and the development of process control techniques. Topics covered include: • Control applications• Process monitoring• Plant-wide control• Process control systems• Control techniques and algorithms• Process modelling and simulation• Design methods Advanced design methods exclude well established and widely studied traditional design techniques such as PID tuning and its many variants. Applications in fields such as control of automotive engines, machinery and robotics are not deemed suitable unless a clear motivation for the relevance to process control is provided.
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